OpenQA: Hybrid QA System Relying on Structured Knowledge Base as well as
Non-structured Data
- URL: http://arxiv.org/abs/2112.15356v1
- Date: Fri, 31 Dec 2021 09:15:39 GMT
- Title: OpenQA: Hybrid QA System Relying on Structured Knowledge Base as well as
Non-structured Data
- Authors: Gaochen Wu, Bin Xu, Yuxin Qin, Yang Liu, Lingyu Liu, Ziwei Wang
- Abstract summary: We propose an intelligent question-answering system based on structured KB and unstructured data, called OpenQA.
We integrate KBQA structured question answering based on semantic parsing and deep representation learning, and two-stage unstructured question answering based on retrieval and neural machine reading comprehension into OpenQA.
- Score: 15.585969737147892
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Search engines based on keyword retrieval can no longer adapt to the way of
information acquisition in the era of intelligent Internet of Things due to the
return of keyword related Internet pages. How to quickly, accurately and
effectively obtain the information needed by users from massive Internet data
has become one of the key issues urgently needed to be solved. We propose an
intelligent question-answering system based on structured KB and unstructured
data, called OpenQA, in which users can give query questions and the model can
quickly give accurate answers back to users. We integrate KBQA structured
question answering based on semantic parsing and deep representation learning,
and two-stage unstructured question answering based on retrieval and neural
machine reading comprehension into OpenQA, and return the final answer with the
highest probability through the Transformer answer selection module in OpenQA.
We carry out preliminary experiments on our constructed dataset, and the
experimental results prove the effectiveness of the proposed intelligent
question answering system. At the same time, the core technology of each module
of OpenQA platform is still in the forefront of academic hot spots, and the
theoretical essence and enrichment of OpenQA will be further explored based on
these academic hot spots.
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